Double debiased machine learning nonparametric inference with continuous treatments

We propose a nonparametric inference method for causal e?ects of continuous treatment variables, under unconfoundedness and in the presence of high-dimensional or nonparametric nuisance parameters. Our simple kernel-based double debiased machine learning (DML) estimators for the average dose-respons...

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Bibliographic Details
Main Authors: Kyle Colangelo, Ying-Ying Lee
Format: Report
Language:unknown
Subjects:
DML
Online Access:https://www.ifs.org.uk/uploads/CW5419-Double-debiased-machine-learning-nonparametric-inference-with-continuous-treatments.pdf
Description
Summary:We propose a nonparametric inference method for causal e?ects of continuous treatment variables, under unconfoundedness and in the presence of high-dimensional or nonparametric nuisance parameters. Our simple kernel-based double debiased machine learning (DML) estimators for the average dose-response function (or the average structural function) and the partial e?ects are asymptotically normal with a nonparametric convergence rate. The nuisance estimators for the conditional expectation function and the generalized propensity score can be nonparametric kernel or series estimators or ML methods. Using doubly robust in?uence function and cross-?tting, we give tractable primitive conditions under which the nuisance estimators do not a?ect the ?rst-order large sample distribution of the DML estimators.